A fault prediction method for closed-loop SEPIC converters under variable operating conditions

Yuanyuan Jiang, You-ren Wang, Quan Sun, Yi Wu
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引用次数: 4

Abstract

Due to the critical applications of single-ended primary inductance converter (SEPIC) in various fields, it is necessary for the SEPIC converters to predict their performance trends. Closed-loop control instead of open-loop control have been adopted in SEPIC converters, and the fault prognostic methods used for open-loop converters sometimes are no longer suitable for closed-loop converters. Besides, the system-level fault feature parameters (FFP) is often influenced not only by the fault modes, but also by the variation of working conditions. To address these problems, an innovative system-level FFP represents the degradation status of the entire converter under variable operating conditions is extracted, and a prognostic method based on the degradation trend of the FFP is proposed. Firstly, the deterioration laws of some system-level parameters with the change of critical components under different operating conditions are studied. Then, a system-level performance parameter of closed-loop SEPIC converters which is sensitive to the degradation of all critical components and has regular trend is chosen, and the degradation performance parameter under rated operating condition is obtained as FFP by multivariate least-squares regression. Finally, the trend prediction of the FFP is performed based on Extreme learning machine (ELM) to realize the prognosis of closed-loop SEPIC converters. The experimental results show the feasibility and effectiveness of the proposed method.
变工况下闭环SEPIC变流器故障预测方法
由于单端初级电感变换器(SEPIC)在各个领域的重要应用,有必要对SEPIC变换器的性能趋势进行预测。SEPIC变流器采用闭环控制代替开环控制,开环变流器的故障预测方法有时已不适用于闭环变流器。此外,系统级故障特征参数(FFP)不仅受故障模式的影响,还受工况变化的影响。针对这些问题,提出了一种新颖的系统级FFP,该FFP代表变工况下整个变流器的退化状态,并提出了一种基于FFP退化趋势的预测方法。首先,研究了不同工况下系统级参数随关键部件变化的劣化规律;然后,选取对各关键部件退化敏感且具有规律趋势的闭环SEPIC变换器系统级性能参数,通过多元最小二乘回归得到额定工况下的退化性能参数作为FFP;最后,基于极限学习机(ELM)对FFP进行趋势预测,实现闭环SEPIC变换器的预测。实验结果表明了该方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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